System and method for providing supplemental functionalities to a computer program

ABSTRACT

Supplemental functionalities may be provided to an executable program via the ontology, for example, without having to modify the application code of the executable program or without having to recompile the executable program. In some embodiments, objects may be extracted from a collection of documents. The objects may be converted to one or more data sets having a pre-defined format. One or more relationships between the data sets may be defined. An ontology may be generated based on the data sets and the relationships. Supplemental information may be generated for an executable program based on the ontology. The supplemental information may be related to one or more functionalities of an application. The supplemental information may be provided as input to the executable program, where the supplemental information causes the functionalities of the application be made available via the executable program.

CROSS-REFERENCE TO RELATED APPLICATIONS

This application is a continuation of U.S. patent application Ser. No. 15/480,320, filed Apr. 5, 2017, which is a continuation-in-part of U.S. patent application Ser. No. 15/393,238, filed Dec. 28, 2016, which is a continuation of U.S. patent application Ser. No. 14/859,016, filed Sep. 18, 2015, each of which is hereby incorporated by reference in its entirety. This application is also related to U.S. patent application Ser. No. 14/858,980, filed Sep. 18, 2015, and U.S. patent application Ser. No. 14/859,032, each of which is also hereby incorporated by reference herein in its entirety.

FIELD OF THE INVENTION

The invention relates to providing ontology-configurable computer programs and, more particularly, to providing supplemental functionalities for computer programs.

BACKGROUND OF THE INVENTION

Application software (also referred to as an application) is generally designed to perform one or more tasks, activities, or projects on behalf of users. For example, some business applications are used by business users to perform various business functions, like measuring productivity, tracking inventory, workflow management, and executing various back-office tasks. Business applications sharing the same or similar business functions may be considered as a class of business applications, such as business process management (BPM) applications and master data management (MDM) applications. The business applications in the same class may share data models, such as the same or similar business objects (e.g., classes, objects, and relationships). In addition to its business function, each particular business application may be built based on knowledge from one or more domains of interest, such as the human resource domain, healthcare domain, technology domain, etc. For example, a new employee on-boarding application may belong to the class of BPM applications and specialize in the human resource domain.

Traditionally, data models shared by the same class of business applications are expressed by custom software modules written, for instance, in a traditional object-oriented programming language reflecting the data model as business objects. Typically, to add domain-specific knowledge to a business application, programmers write application code embodying the domain-specific knowledge in the same programming language (as the source code of the business application), or the application code is generated automatically based on some information gathered from a business analyst or a domain expert. Regardless, these typical approaches generally require changes to the application code of the business application. As such, when new code is introduced in an application, a significant amount of time and effort is generally required to ensure the integrity of the resulting application, which brings significant barriers in terms of productivity, and can propagate errors throughout a code base in an unpredictable fashion. These and other drawbacks exist.

SUMMARY OF THE INVENTION

The invention addressing these and other drawbacks relates to methods, apparatuses, and/or systems for providing ontology-configurable computer programs and/or supplemental functionalities for computer programs via ontology instances. As an example, an application (and/or a computer program thereof) may be supplemented with additional functionalities, e.g., for specializing a business application in a particular domain of interest, without having to modify the application code of the application (and/or without having to recompile such application code to recreate an “updated” version of the executable). To achieve this, for example, a business application may utilize at runtime supplemental information as at least part of its working memory.

In accordance with some embodiments described herein, a method for providing supplemental functionalities for a computer program (e.g., an executable program or other computer program) via an instance of an ontology describing a class of applications may be provided. A computer program associated with an ontology may be caused to be run. The ontology may include information indicating attributes for a set of applications. Examples of the attributes include, but are not limited to, classes, properties, and axioms. An instance of the ontology may be obtained, which corresponds to an application of the set of applications. Based on the ontology instance, supplemental information related to one or more functionalities of the application to be added to the computer program may be provided for the computer program. The supplemental information may be provided as input to the computer program. The supplemental information, at least in part, may cause the one or more functionalities of the application be made available via the executable program.

In some embodiments, the computer program may be a logic program for executing the functionalities of the application using the supplemental information. The computer program may be configurable to perform a set of tasks common to a class of business application in each of several different domains of interest. The executable program may obtain the supplemental information from working memory at runtime. The supplemental information may include metadata in a graph data structure, such as a Resource Description Framework (RDF) graph. The one or more functionalities may be made available via the executable program without recompiling the executable program.

In some embodiments, by obtaining a different instance of the ontology that corresponds to another application of the set of applications, different supplemental information related to different functionalities of the other application may be generated and provided to the computer program to enable to the different functionalities to be available via the computer program. For example, the computer program may be a business application that can be supplemented to “create” other business applications in the same class without, for example, having to modify the code of the business application or recompile an updated version of the business application.

In accordance with other aspects of the inventions, a method for providing supplemental functionalities for a computer program (e.g., an executable program or other computer program) via a domain-specific ontology and an instance of a general ontology may be provided. For example, a business application may be specialized using a domain-specific ontology by this method. A computer program may be caused to be run. A general ontology and a domain-specific ontology may be obtained. The domain-specific ontology may be associated with a domain of interest, and the general ontology can be used to interpret the domain-specific ontology or any other domain-specific ontology. An instance of the general ontology may be obtained. The general ontology instance may be based on the domain-specific ontology and correspond to an application associated with the domain of interest. Based on the general ontology instance, supplemental information related to one or more functionalities of the application to be added to the computer program may be generated for the computer program. The supplemental information may be provided as input to the computer program. The supplemental information, at least in part, may cause the one or more functionalities of the application be made available via the executable program.

In some embodiments, the computer program may be a logic program for executing the functionalities of the application using the supplemental information. The computer program may be configurable to perform a set of tasks common to a class of business application in each of several different domains of interest. The executable program may obtain the supplemental information from working memory at runtime. The supplemental information may include metadata in a graph data structure, such as an RDF graph. The one or more functionalities may be made available via the executable program without recompiling the executable program.

In some embodiments, by obtaining a different domain-specific ontology in another domain of interest and a different instance of the general ontology based on the different domain-specific ontology, different supplemental information related to different functionalities of another application may be generated and provided to the computer program to enable the different functionalities to be available via the computer program. For example, the computer program may be a business application that can be supplemented to “create” other business applications in different domains of interests without, for example, having to modify the code of the business application or recompile an updated version of the business application.

In accordance with still other aspects of the inventions, a method for providing supplemental functionalities for a computer program (e.g., an executable program or other computer program) via a domain-specific ontology and an instance of an ontology describing a class of applications may be provided. For example, a domain-specific business application that belongs to a class of business applications may be specialized by this method. A computer program associated with an ontology may be caused to be run. The ontology may include information indicating attributes for a set of applications. Examples of the attributes include, but are not limited to, classes, properties, and axioms. A domain-specific ontology may be obtained. The domain-specific ontology may be associated with a domain of interest. An instance of the ontology may be obtained. The ontology instance may be based on the domain-specific ontology and correspond to an application of the set of applications that is associated with the domain of interest. Based on the ontology instance, supplemental information related to one or more functionalities of the application to be added to the computer program may be generated for the computer program. The supplemental information may be provided as input to the computer program. The supplemental information, at least in part, may cause the one or more functionalities of the application be made available via the executable program.

In some embodiments, the computer program may be a logic program for executing the functionalities of the application using the supplemental information. The computer program may be configurable to perform a set of tasks common to a class of business application in each of several different domains of interest. The executable program may obtain the supplemental information from working memory at runtime. The supplemental information may include metadata in a graph data structure, such as an RDF graph. The one or more functionalities may be made available via the executable program without recompiling the executable program.

In some embodiments, by obtaining a different instance of the ontology that is based on the domain-specific ontology and corresponds to another application of the set of applications in the domain of interest, different supplemental information related to different functionalities of the other application may be generated and provided to the computer program to enable the different functionalities to be available via the computer program. For example, the computer program may be a business application that can be supplemented to “create” other business applications in the same class without, for example, having to modify the code of the business application or recompile an updated version of the business application.

Various other aspects, features, and advantages of the inventions will be apparent through the detailed description of the invention and the drawings attached hereto. It is also to be understood that both the foregoing general description and the following detailed description are exemplary and not restrictive of the scope of the inventions. As used in the specification and in the claims, the singular forms of “a”, “an”, and “the” include plural referents unless the context clearly dictates otherwise. In addition, as used in the specification and the claims, the term “or” means “and/or” unless the context clearly dictates otherwise.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 shows a system for providing ontology-configurable computer programs and/or supplemental functionalities for computer programs, in accordance with some embodiments.

FIG. 2 shows an ontology management subsystem, in accordance with some embodiments.

FIG. 3 shows an executable program that accesses supplemental information in a working memory at runtime, in accordance with some embodiments.

FIG. 4 shows a process of providing supplemental functionalities for a computer program via an instance of an ontology describing a class of applications, in accordance with some embodiments.

FIG. 5 is a flowchart of a method of providing supplemental functionalities for a computer program via an instance of an ontology describing a class of applications, in accordance with some embodiments.

FIG. 6 is a flowchart of a method of generating a programming interface and logic rules based on an ontology describing a class of applications, in accordance with some embodiments.

FIG. 7 shows a process of providing supplemental functionalities for a computer program via a domain-specific ontology and an instance of a general ontology, in accordance with some embodiments.

FIG. 8 is a flowchart of a method of providing supplemental functionalities for a computer program via a domain-specific ontology and an instance of a general ontology, in accordance with some embodiments.

FIG. 9 is a flowchart of a method of generating a programming interface and logic rules based on a domain-specific ontology and a general ontology, in accordance with some embodiments.

FIG. 10 shows a process of providing supplemental functionalities for a computer program via a domain-specific ontology and an instance of an ontology describing a class of applications, in accordance with some embodiments.

FIG. 11 is a flowchart of a method of providing supplemental functionalities for a computer program via a domain-specific ontology and an instance of an ontology describing a class of applications, in accordance with some embodiments.

FIG. 12 is a flowchart of a method of generating a programming interface and logic rules based on a domain-specific ontology and an instance of an ontology describing a class of applications, in accordance with some embodiments.

FIG. 13 shows an ontology describing a class of BPM applications, in accordance with some embodiments.

FIG. 14 shows a general ontology, in accordance with some embodiments.

FIG. 15 shows a domain-specific ontology in the human resource domain, in accordance with some embodiments.

FIG. 16 shows example of a data model associated with a set of technical assets, in accordance with some embodiments.

FIG. 17 shows an ontology management subsystem, in accordance with some embodiments.

FIG. 18 shows a flowchart of a method of creating an ontology from business and/or technology assets, in accordance with some embodiments.

FIG. 19 shows an ontology management subsystem, in accordance with some embodiments.

FIG. 20 shows a flowchart of a method of reconciling data from business and/or technology assets into an existing ontology, in accordance with some embodiments.

DETAILED DESCRIPTION OF THE INVENTION

In the following description, for the purposes of explanation, numerous specific details are set forth in order to provide a thorough understanding of the embodiments of the invention. It will be appreciated, however, by those having skill in the art that the embodiments of the invention may be practiced without these specific details or with an equivalent arrangement. In other instances, well-known structures and devices are shown in block diagram form in order to avoid unnecessarily obscuring the embodiments of the invention.

To mitigate the problems described herein, the inventors had to both invent solutions and, in some cases just as importantly, recognize problems overlooked (or not yet foreseen) by others in the field of enterprise software development. Indeed, the inventors wish to emphasize the difficulty of recognizing those problems that are nascent and will become much more apparent in the future should trends in industry continue as the inventors expect. Further, because multiple problems are addressed, it should be understood that some embodiments are problem-specific, and not all embodiments address every problem with traditional systems described herein or provide every benefit described herein. That said, improvements that solve various permutations of these problems are described below.

The complexity of software, particularly in business applications, has expanded dramatically in recent years. As a result, the cost of many types of custom software has risen. It is also believed that the responsiveness of developers to changing business needs has decreased. In part, this is caused by code added to address more complex use cases and extensive testing of new versions to understand complex interactions introduced by revisions to applications.

These issues, in some cases, are mitigated by some embodiments described below. Some embodiments may separately address two aspects of an application: (1) those aspects particular to a class of business applications; and (2) those aspects particular to a domain in which an instance of the class is to be applied. In some cases, relatively flexible executable code is generated for a class of business applications, and then functionality of that code is refined with an ontology that reflects more specific aspects of a particular domain. In some cases, the ontology can be created much more efficiently than the corresponding bespoke application can be created from scratch, as the ontology can facilitate code re-use across domains in some embodiments. And in some cases, the ontology can be modified with less risk to the larger code base, often without compiling new code.

It should be emphasized, though, that several inventions are described. These inventions are independently useful, so not all embodiments mitigate all of the problems addressed above, and some embodiments provide other benefits discussed below.

Description of Example Systems

FIG. 1 shows a system 100 for providing supplemental functionalities for an executable program via ontology instances, in accordance with some embodiments. As shown in FIG. 1, the system 100 may comprise a computer system 102 (which may be multiple computer systems 102). The computer system 102 may comprise one or more physical processors 106 programmed with one or more computer program instructions and electronic storage 108, or other components. Various programs and subsystems may be implemented on the physical processors 106, including ontology management subsystem 112, supplemental information generation subsystem 114, or other components (e.g., ontology-configurable computer programs or applications, other subsystems, etc.).

In some embodiments, the computer system 102 in FIG. 1 may include communication lines or ports to enable the exchange of information with a network or other computing platforms. The computer system 102 may include a plurality of hardware, software, and/or firmware components operating together to provide the functionality attributed herein to the computer system 102. For example, the computer system 102 may be implemented by a cloud of computing platforms operating together as the computer system 102.

The electronic storage 108 may comprise non-transitory storage media that electronically stores information. The electronic storage media of the electronic storage 108 may include one or both of system storage that is provided integrally (e.g., substantially non-removable) with the computer system 102 or removable storage that is removably connectable to the computer system 102 via, for example, a port (e.g., a USB port, a firewire port, etc.) or a drive (e.g., a disk drive, etc.). The electronic storage 108 may include one or more of optically readable storage media (e.g., optical disks, etc.), magnetically readable storage media (e.g., magnetic tape, magnetic hard drive, floppy drive, etc.), electrical charge-based storage media (e.g., EEPROM, RAM, etc.), solid-state storage media (e.g., flash drive, etc.), and/or other electronically readable storage media. The electronic storage 108 may include one or more virtual storage resources (e.g., cloud storage, a virtual private network, and/or other virtual storage resources). The electronic storage 108 may store software algorithms, information determined by the processors 106, information received from the computer system 102, information received from client computing platforms, or other information that enables the computer system 102 to function as described herein.

The processors 106 may be programmed to provide information processing capabilities in the computer system 102. As such, the processors 106 may include one or more of a digital processor, an analog processor, a digital circuit designed to process information, an analog circuit designed to process information, a state machine, and/or other mechanisms for electronically processing information. In some embodiments, the processors 106 may include a plurality of processing units. These processing units may be physically located within the same device, or the processors may represent processing functionality of a plurality of devices operating in coordination. The processors 106 may be programmed to execute computer program instructions to perform functions described herein of the subsystems 112 and 114, or other components. The processors 106 may be programmed to execute computer program instructions by software; hardware; firmware; some combination of software, hardware, or firmware; and/or other mechanisms for configuring processing capabilities on the processors 106.

A computer program on the computer system 102 may comprise an application runtime that can cause the computer system 102 to perform indicated tasks according to encoded instructions. The instructions may be any instructions (such as bytecode) for a software interpreter including, but not limited to, machine code instructions for the processors 106, scripting language source file, etc. In some cases, the instructions may be complied or interpreted instructions for which source code is not provided to the party developing ontologies. An executable (of the computer program) may be hand-coded in machine language directly or may be developed as source code in any high-level programming language or assembly language and then complied into either an executable machine code file or non-executable machine code object files. The executable program may further include a runtime system, which provides runtime language features and interactions with the runtime environment of the computer system 102. In one example, the runtime system of the executable program may be a logic program including a rule engine and a set of runtime rules that control the execution of the executable program. As an example, specialization of the executable program may be achieved by accessing supplemental information in a working memory at runtime without the need to modify the executable program (e.g., reprogramming the source code and/or recompiling the source code of the executable program). For example, functionalities of any particular application or a class of applications in a particular domain of interest may be enabled on the executable program using one or more ontologies as will be described in details below. In some embodiments, the executable program may be a logic program for executing functionalities of an application using the supplemental information.

The ontology management subsystem 112 may perform various functions with respect to different types of ontologies in different embodiments. An ontology may be a machine-processable artifact that defines and captures the relationships between concepts (classes) and objects (individuals of such classes) in some domain of interest. A logic-based ontology language allows ontologies to be specified as logical theories, meaning that it is possible to reason about the relationships between the concepts and objects that are expressed in such an ontology.

Referring now to FIG. 2 (in which an ontology management subsystem 112 is shown), the ontology management subsystem 112 may include an ontology defining component 202 configured to define an ontology. The ontology may be defined in any logic-based ontology language or specific version of logic-based ontology language using any semantic editor. For example, the ontology management subsystem 112 may define and modify an ontology in Web Ontology Language DL 2.0 (OWL DL 2.0) using the Protege ontology editor. In different embodiments, various types of ontologies may be defined by the ontology management subsystem 112, such as an ontology describing a class of applications (a.k.a. a class ontology), e.g., a BPM class ontology; an ontology that is associated with a specific domain of interest (a.k.a. a domain-specific ontology), e.g., a human resource domain ontology; and an ontology that can interpret any domain-specific ontology (a.k.a. a general ontology), e.g., a domain meta model ontology defined to describe the class structure of any domain-specific ontology. More examples of classes of applications and domains of interests are shown below in Table 1.

TABLE 1 Class of Applications Domain of Interest Business Process Management Healthcare (BPM) Enterprise Resource Planning (ERP) Finance and Banking Claim Adjudication Human Resource Content Management System (CMS) Manufacturing Workforce Management Distribution and Logistics Customer Relationship Management Government and Public Sector (CRM) Call Center Management Defense Industry Master Data Management (MDM) Automotive Enterprise Asset Management Engineering (EAM) Supply Chain Management (SCM) Insurance Accounting Management Media Revenue Cycle Management (RCM) Real Estate Order and Fulfillment Management Retail Operation Management Technology Help Desk Management Telecommunication Transportation & Travel Education It should be understood that multiple domains of interest (domain-specific verticals) may be applied to each class of applications. For example, each of the domains of interest listed in Table 1 that use computers may be applied to the Help Desk Management class of applications, and ERP software has applications in manufacturing, finance, banking, healthcare services, etc.

FIGS. 13-15 illustrate various examples of ontologies described in OWL DL 2.0 using the Protege ontology editor. Each ontology includes information indicating various attributes, such as classes, properties, and axioms. FIG. 13 shows an extract of a class ontology 1300 describing the class of BPM applications. In this example, the BPMN 2.0 specification from the Object Management Group (OMG) is used as a guide for elaborating an ontology for the class of BPM applications. The ontology, being logic-based, embodies axioms contained the textual description of the BPMN specification. The class information, such as class hierarchy (class structure), is shown on the upper left section in FIG. 13; the property information is shown on the lower left section of FIG. 13. As an example, in FIG. 13, the axioms of class MessageEndEvent are shown in the lower right section. The first axiom is a class construct describing an equivalent class to the class MessageEndEvent: MessageEndEvent≡EndEvent and (hasEventDefinitions some MessageEventDefinition) and (hasEventDefnition exactly 1 Thing).

This axiom can be translated into plain language as: A MessageEndEvent is equivalent to EndEvent having a single EventDefinition of type MessageEventDefinition. Once the ontology is defined by the ontology defining component 202, it may be saved as a file in any suitable format, such as RDF/XML. RDF is a known data model for encoding metadata and knowledge on the Semantic Web using facts expressed as triples. For example, the definitions of the class MessageEndEvent may be described in the saved RDF/XML file as:

<owl:Class rdf:about=“&bpmn;MessageEndEvent”> <owl:equivalentClass> <owl:Class> <owl:intersectionOf rdf:parseType=“Collection”> <rdf:Description rdf:about=“&bpmn;EndEvent”/> <owl:Restriction> <owl:onProperty rdf:resource=“&bpmn;hasEventDefinitions”/> <owl:someValuesFrom rdf:resource=“&bpmn;MessageEventDefinition”/> </owl:Restriction> <owl:Restriction> <owl:onProperty rdf.resource=“&bpmn;hasEventDefinitions”/> <owl:cardinality rdf:datatype=“&xsd;nonNegativeInteger”>1</owl:cardinality> </owl:Restriction> </owl:intersectionOf> </owl:Class> </owl:equivalentClass> <rdfs:subClassOf rdf:resource=“&bpmn;EndEvent”/> <rdfs:subClassOf> <owl:Restriction> <owl:onProperty rdf:resource=“&bpmn;topReactiveHelper”/> <owl:hasValue>iMessageEndEvent</owl:hasValue> </owl:Restriction> </rdfs:subClassOf> </owl:Class>

FIG. 14 shows an extract of a general ontology 1400 that can describe and interpret any domain-specific ontology. A domain-specific ontology may be described using metadata information. The metadata information may describe the domain-specific ontology class and property information. The structure of the metadata information may be itself described using a general ontology called the domain meta model ontology. The domain meta model ontology may not be modified and have no dependency on any domain-specific ontology. The domain meta model may become a known and explicit structure used by an executable program (e.g., an ontology-configurable executable program) to interpret the structure of the domain-specific ontology. The key classes of this general ontology in FIG. 14 include ClassMetadata and PropertyMetadata describing the structure of class and property respectively.

FIG. 15 shows an extract of a domain-specific ontology 1500 that is associated with the human resource domain (a human resource domain ontology). The human resource domain ontology may be described by instances of the domain meta model ontology shown in FIG. 14. For example, the ontology in FIG. 14 shows that a Person can be Employee, BoardDirector and Executive depending on the Role they have. It should be understood that FIGS. 13-15 show illustrative ontologies only and are by no means complete in order to describe the class of BPM applications, the domain meta model, and the human resource domain, respectively.

With respect to FIG. 2, the ontology management subsystem 112 may also include an ontology validation component 204 configured to validate any ontology and assign a freeze to the validated ontology. In some embodiments, the ontology validation component 204 may include any semantic reasoners, such as Pellet, RacerPro, FaCT++, and HermiT, for ensuring an ontology is consistent once the ontology has been defined by the ontology defining component 202. An inconsistent ontology may be an ontology that, by virtue of what has been stated in the ontology, cannot have any models, and entails everything, meaning any conclusion can be deduced. Once the ontology is complete (meaning it describes all the concepts, objects, their relationships, and axioms) and is ensured to be consistent, it may be frozen by the ontology validation component 204 such that the ontology can no longer be changed or modified. If the ontology needs to be changed, it needs to be redefined by the ontology defining component 202 as a new version of the ontology. It should be noted that any types of ontologies defined by the ontology defining component 202, e.g., class ontologies, general ontologies, and domain-specific ontologies, may be validated and frozen by the ontology validation component 204.

The ontology management subsystem 112 in FIG. 2 may further include a programming interface generation component 206 and a logic rule generation component 208. The programming interface generation component 206 may extract class information 210 from a frozen ontology and generate, based on the extracted class information 210, a programming interface to allow an executable program (e.g., an ontology-configurable executable program) to access the supplemental information via the programming interface. An ontology may be processed by a computer program to extract class information 210 including, for example, the class structure (concept hierarchy), the data properties associated with each class, and the relationships, if any, shared between classes. The class information 210 may be used by the programming interface generation component 206 to generate computer code in any programming language, such as Scala, JAVA™, Python™, C++, C#, Ruby, etc., to be used as a programming interface for a class of applications and/or applications in a domain of interest. The programming interface referred herein may be computer code in a programming language that describes classes corresponding to the static structure of the ontology and that provides a natural interface to the executable program for accessing the supplemental information (e.g., metadata of ontology class structures) stored in a working memory at runtime.

The logic rule generation component 208 in FIG. 2 may extract axiom information 212 from a frozen ontology and generate, based on the axiom information 212, a set of logic rules. The logic rules may be used to compute entailments on the instances of an ontology. The entailments may include the inferred class hierarchy (asserted and inferred class membership of the instances) as well as be used to ensure the asserted instances are consistent with the ontology. That is, the logic rules may be used to transform ontology instances into application metadata information and used to validate ontology instances to ensure conformance of the instances with the ontology. In some embodiments, an ontology instance is frozen, and its corresponding metadata information becomes read-only once the ontology instance has been validated by the logic rules generated by the logic rule generation component 208. Depending on the type of ontology from which the logic rules are generated, the logic rules may include class logic rules generated based on a class ontology, general logic rules generated based on a general ontology, and specific logic rules generated based on a domain-specific ontology. In some embodiments, only the class logic rules and general logic rules may be used for computing entailments on ontology instances and for validating ontology instances. The logic rules may be augmented with the runtime rules of the executable program to control the execution of the executable program. For example, the specific logic rules generated based on a domain-specific ontology may be applied to the domain-specific ontology instance by the executable program at runtime.

Turning back to FIG. 1, the supplemental information generation subsystem 114 may generate supplemental information related to one or more functionalities of an application based on an instance of an ontology defined by the ontology management subsystem 112. In one use case, the instance may be from a class ontology and specify one of a class of applications (e.g., a BPM application), and the supplemental information is related to functionalities of one of the BPM applications. In another use case, the instance may be from a general ontology (e.g., a domain meta model ontology) and describe a domain-specific ontology (e.g., the human resource domain), and the supplemental information is related to functionalities of an application in the human resource domain. An ontology instance may be described in any suitable format, such as in the forms of triples in the RDF/XML format. The supplemental information generated by the supplemental information generation subsystem 114 may include metadata information transformed from the ontology instance. Additionally or optionally, the logic rules generated by the logic rule generation component 208 of the ontology management subsystem 112 may be used by the supplemental information generation subsystem 114 to infer additional metadata information as part of the supplemental information.

Referring to FIG. 3, in some embodiments, the supplemental information 304 includes metadata in a graph data structure, such as an RDF graph, stored in a working memory 302. The supplemental information 304 may include metadata 306 transformed directly from an ontology instance and metadata 308 inferred from an ontology instance based on the logic rules generated by the logic rule generation component 208 of the ontology management subsystem 112. For metadata 306, it may include facts, e.g., objects (or individuals) of the classes, asserted by a class ontology, which can be used to describe a particular application in the class of applications corresponding to the class ontology. Metadata 306 may include facts, e.g., objects (or individuals) of the classes, asserted by a general ontology (e.g., a domain meta model ontology) that can be used to describe and interpret any domain-specific ontology. For metadata 308, it may include entailments computed from objects in metadata 306 using the logic rules. The entailments may include the verification that the objects are consistent with the axioms of the ontology, meaning that no axioms are violated. Both metadata 306 and 308 may be augmented using the logic rules to form the supplemental information 304 that is related to functionalities of an application.

In FIG. 3, an executable program 309 may include a rule engine 310 the manipulates the supplemental information 304 in the working memory 302 at runtime via the programming interface 316 based on a set of rules including the runtime rules 312 and logic rules 314. As mentioned above, the programming interface 316 may be generated by the programming interface generation component 206 of the ontology management subsystem 112. The programming interface 316 may include computer code in a programming language describing the class structures that are used by the supplemental information 304 in the working memory 302. The executable program 309 can thus get access to the metadata 306, 308 via the programming interface 316. The logic rules 314 used by the rule engine 310 may include class logic rules, general logic rules, and specific logic rules generated from corresponding types of ontologies, each of which may be utilized for controlling the executable program 309 to access corresponding information. The runtime rules 312, on the other hand, may not alter the supplemental information 304 in any way and provide control capability to the executable program 309. The runtime rules 312 may be utilized for controlling the executable program 309 to access context information of executing the executable program 309. Accordingly, by placing different supplemental information 304 corresponding to functionalities of different applications in the working memory 302 and applying the programming interface 316 and logic rules 314 generated from the corresponding ontologies, the executable program 309 can be specialized with different functionalities without the need of adding or modifying computer code.

It should be appreciated that the description of the functionality provided by the different subsystems 112 and 114 described herein is for illustrative purposes only, and is not intended to be limiting, as any of subsystems 112 and 114 may provide more or less functionality than is described. For example, additional subsystems may be programmed to perform some or all of the functionality attributed herein to one of subsystems 112 and 114.

The system 100 may further comprise a client device 104 (or multiple client devices 104). A client device 104 may comprise any type of mobile terminal, fixed terminal, or other device. By way of example, a client device 104 may comprise a desktop computer, a notebook computer, a netbook computer, a tablet computer, a smartphone, a navigation device, an electronic book device, a gaming device, or other user device. Users may, for instance, utilize one or more client devices 104 to interact with computer system 102 or other components of system 100. The users may include administrative users such as managers or programmers who manage the subsystems 112 and 114. The users may also include customers who use ontology-configurable programs and applications derived thereof.

Attention will now be turned to a more detailed description of various embodiments comprising one or more features related to providing ontology-configurable computer programs and/or supplemental functionalities for computer programs via ontology instances. It should be noted that features described herein may be implemented separately or in combination with one another.

Functionalities Provided Via a Class Ontology Instance

FIGS. 4-6 illustrate one aspect of the invention, which can provide supplemental functionalities for an executable program via a class ontology instance. FIGS. 4-6 further describe the design and creation of a class of applications by the use of a class ontology. The ontology describes the class of applications, and, at runtime, instances of the ontology are used as metadata for specifying a particular application.

As shown in FIG. 4, an ontology 402 (a class ontology) describes a class of applications 404, such as the classes listed in Table 1. For example, a BPM class ontology may embody all of the axioms contained in the textual description of the BPMN specification. An example BPM class ontology has been described above with respect to FIG. 13. As mentioned above, both class information and axiom information may be extracted from a class ontology and used to generate the programming interface and logic rules, respectively. Following the BPM class ontology example described in FIG. 13, the BPM class ontology in the format RDF/XML may be processed by a computer program to generate classes in programming languages equivalent to the static structure of the BPM class ontology. For example, the class in Scala programming language representing the MessageEndEvent class in RDF/XML is:

object MessageEndEventCriteria { def apply(m: Model) = new MessageEndEventCriteria(m, List( (m.owl.owlResource.rdfType, m.rn.MessageEndEvent) )) } class MessageEndEventCriteria(m: Model, l: List[(topengine.api.rdf.Resource, topengine.api.rdf.Resource)]) extends topengine.api.owl.Criteria(l) { def addTopReactiveHelper(o: String) = new MessageEndEventCriteria(m, (m.rn.topReactiveHelper, m.rdfSession.createLiteral(o)) :: criteria) def addHasEventDefinitions(o: EventDefinition) = new MessageEndEventCriteria(m, (m.rn.hasEventDefinitions, o.s) :: criteria) def addIncomingSequenceFlows(o: SequenceFlow) = new MessageEndEventCriteria(m, (m.rn.incomingSequenceFlows, o.s) :: criteria) def addOutgoingSequenceFlow(o: SequenceFlow) = new MessageEndEventCriteria(m, (m.rn.outgoingSequenceFlow, o.s) :: criteria) } object MessageEndEvent { def apply(m: Model, s: topengine.api.rdf.Resource) = { new MessageEndEventImpl(m, m.createInstanceOf(s, m.rn.MessageEndEvent)) } def createInstance(m: Model) = new MessageEndEventImpl(m, m.createInstanceOf(m.rn.MessageEndEvent)) def createNamedInstance(m: Model, name: String) = new MessageEndEventImpl(m, m.createNamedInstanceOf(name, m.rn.MessageEndEvent)) def asMessageEndEvent(m: Model, s: topengine.api.rdf.Resource): Option[MessageEndEvent] = { if(m.isInstanceOf(s, m.rn.MessageEndEvent)) Some(MessageEndEvent(m, s)) else None } def find(m: Model): Iterable[MessageEndEvent] = m.findCustomSubject(m.rn.MessageEndEvent, MessageEndEventCriteria(m), {r => MessageEndEvent.asMessageEndEvent(m.bpmn, r) match { case Some(c) => c case None => throw topengine.api.TopEngineException(“MessageEndEvent.find has subject(s) that are not type MessageEndEvent”) }}) def find(m: Model, criteria: MessageEndEventCriteria): Iterable[MessageEndEvent] = m.findCustomSubject(m.rn.MessageEndEvent, criteria, {r => MessageEndEvent.asMessageEndEvent(m.bpmn, r) match { case Some(c) => c case None => throw topengine.api.TopEngineException(“MessageEndEvent.find has subject(s) that are not type MessageEndEvent”) }}) } trait MessageEndEvent extends EndEvent { val s: topengine.api.rdf.Resource // Properties } class MessageEndEventImpl(m: Model, s: topengine.api.rdf.Resource) extends topengine.api.owl.ThingImpl(m.owl, s) with MessageEndEvent { // Base classes def asEndEvent: EndEvent = EndEvent(m.bpmn, s) def asEvent: Event = Event(m.bpmn, s) def asFlowNode: FlowNode = FlowNode(m.bpmn, s) def asFlowElement: FlowElement = FlowElement(m.bpmn, s) def asThing: topengine.api.owl.Thing = topengine.api.owl.Thing(m.owl, s) // Properties // topReactiveHelper is a Datatype Functional Property, range is String def topReactiveHelper: Option[String] = m.hasObjectAsLiteral(s, m.rn.topReactiveHelper) map { _.getString } def setTopReactiveHelper(o: String) = m.setFunctionalPropertyValue(s, m.rn.topReactiveHelper, o) // hasEventDefinitions is an Object Property def hasEventDefinitions: Iterable[EventDefinition] = m.rdfSession.getCustomObjects(s, m.rn.hasEventDefinitions, { r => EventDefinition.asEventDefinition(m.bpmn, r) match { case Some(c) => c case None => throw topengine.api.TopEngineException(“MessageEndEvent.hasEventDefinitions has object(s) that are not type EventDefinition”) }}) def addHasEventDefinitions(o: EventDefinition) = m.addPropertyValue(s, m.rn.hasEventDefinitions, o.s) def removeHasEventDefinitions(o: EventDefinition) = m.removePropertyValue(s, m.rn.hasEventDefinitions, o.s) def removeAllHasEventDefinitions = m.removePropertyValue(s, m.rn.hasEventDefinitions) // incomingSequenceFlows is an Object Property def incomingSequenceFlows: Iterable[SequenceFlow] = m.rdfSession.getCustomObjects(s, m.rn.incomingSequenceFlows, { r => SequenceFlow.asSequenceFlow(m.bpmn, r) match { case Some(c) => c case None => throw topengine.api.TopEngineException(“MessageEndEvent.incomingSequenceFlows has object(s) that are not type SequenceFlow”) }}) def addIncomingSequenceFlows(o: SequenceFlow) = m.addPropertyValue(s, m.rn.incomingSequenceFlows, o.s) def removeIncomingSequenceFlows(o: SequenceFlow) = m.removePropertyValue(s, m.rn.incomingSequenceFlows, o.s) def removeAllIncomingSequenceFlows = m.removePropertyValue(s, m.rn.incomingSequenceFlows) // outgoingSequenceFlow is an Object Property def outgoingSequenceFlow: Iterable[SequenceFlow] = m.rdfSession.getCustomObjects(s, m.rn.outgoingSequenceFlow, { r => SequenceFlow.asSequenceFlow(m.bpmn, r) match { case Some(c) => c case None => throw topengine.api.TopEngineException(“MessageEndEvent.outgoingSequenceFlow has object(s) that are not type SequenceFlow”) }}) def addOutgoingSequenceFlow(o: SequenceFlow) = m.addPropertyValue(s, m.rn.outgoingSequenceFlow, o.s) def removeOutgoingSequenceFlow(o: SequenceFlow) = m.removePropertyValue(s, m.rn.outgoingSequenceFlow, o.s) def removeAllOutgoingSequenceFlow = m.removePropertyValue(s, m.rn.outgoingSequenceFlow) override def equals(o: Any) = o match { case that: topengine.api.owl.ThingImpl => that.s.key == s.key case _ => false } override def hashCode = s.key } The generated class provides a natural interface to executable programs written in Scala programming language for accessing supplemental information (e.g., metadata) stored in a working memory. The class MessageEndEventImpl is the generated implementation class that performs the access to the underlying supplemental information, for example, in RDF graph.

The generated classes in the programming language may capture the static data model embodied by the ontology. The axioms may be taken into consideration by logic rules that are applied to the supplemental information continuously as data is added to or subtracted from the supplemental information. The logic rules may be generated automatically from the BPM class ontology described in FIG. 13. For example, the logic rules corresponding to the class equivalence axiom for the class MessageEndEvent are:

# bpmn:MessageEndEvent is equivalent to the following conjunction: [n=bpmn52, s=100]: (?s rdf:type bpmn:EndEvent). (?s bpmn:hasEventDefinitions ?o).(?o rdf:type bpmn:MessageEventDefinition). [?s test_cardinality bpmn_res:8] −> (?s rdf:type bpmn:MessageEndEvent)

Back to FIG. 4, an instance 406 of the class ontology 402 may be obtained from the class ontology 402. The ontology instance 406 may specify an application 408 in the class of applications 404. Following the BPM class ontology example described in FIG. 13, a sample human resource employee on-boarding process may be specified as an instance of the example BPM class ontology, and thus, the employee on-boarding application is a member of the class of BPM applications. The on-boarding process described herein is for illustrative purposes only and is not meant to be complete. The process includes an instance of bpmn:Process class having a single bpmn:FlowElement of type bpmn:StartEvent. This start event has an event definition of type bpmn:MessageEventDefinition. The event definition defines the mapping elements for the message initiating the business process. In this example, it defines the mapping for the first and last name of the employee. The example employee on-boarding process may be expressed as individuals of the example BPM class ontology and can be expressed as an OWL document in the RDF/XML format:

<!-- http://owl.reactivecore.com/topreactive/sample/bpmn/acme-bpmn- hr#iAcmeOnboardingProcess --> <owl:NamedIndividual rdf:about=“&acme-bpmn-hr;iAcmeOnboardingProcess”> <rdf:type rdf:resource=“&bpmn;Process”/> <bpmn:hasFlowElement rdf:resource=“&acme-bpmn-hr;iAcmeStartOnboarding”/> </owl:NamedIndividual> <!-- http://owl.reactivecore.com/topreactive/sample/bpmn/acme-bpmn- hr#iAcmeStartOnboarding --> <owl:NamedIndividual rdf:about=“&acme-bpmn-hr;iAcmeStartOnboarding”> <rdf:type rdf:resource=“&bpmn;StartEvent”/> <bpmn:hasEventDefinitions rdf:resource=“&acme-bpmn- hr;iStartOnboardingMessageDefinition”/> </owl:NamedIndividual> <!-- http://owl.reactivecore.com/topreactive/sample/bpmn/acme-bpmn- hr#iFirstNameMappingElm --> <owl:NamedIndividual rdf:about=“&acme-bpmn-hr;iFirstNameMappingElm”> <rdf:type rdf:resource=“&bpmn;MappingElement”/> <bpmn:sourceFieldName>GivenName</bpmn:sourceFieldName> <bpmn:targetFieldName>hr:firstName</bpmn:targetFieldName> <bpmn:targetFieldType>xsd:string</bpmn:targetFieldType> <bpmn:sourceFieldType>xsd:string</bpmn:sourceFieldType> </owl:NamedIndividual> <!-- http://owl.reactivecore.com/topreactive/sample/bpmn/acme-bpmn- hr#iLastNameMappingElm --> <owl:NamedIndividual rdf:about=“&acme-bpmn-hr;iLastNameMappingElm”> <rdf:type rdf:resource=“&bpmn;MappingElement”/> <bpmn:targetFieldType>xsd:string</bpmn:targetFieldType> <bpmn:targetFieldName>hr:lastName</bpmn:targetFieldName> <bpmn:sourceFieldName>FamilyName</bpmn:sourceFieldName> <bpmn:sourceFieldType>xsd:string</bpmn:sourceFieldType> </owl:NamedIndividual> <!-- http://owl.reactivecore.com/topreactive/sample/bpmn/acme-bpmn- hr#iStartOnboardingMessageDefinition --> <owl:NamedIndividual rdf:about=“&acme-bpmn-hr;iStartOnboardingMessageDefinition”> <rdf:type rdf:resource=“&bpmn;MessageEventDefinition”/> <bpmn:hasEventDefinitions rdf:resource=“&acme-bpmn-hr;iFirstNameMappingElm”/> <bpmn:hasEventDefinitions rdf:resource=“&acme-bpmn-hr;iLastNameMappingElm”/> </owl:NamedIndividual>

In FIG. 4, supplemental information 410 may be generated based on the ontology instance 406. The supplemental information 410 may be related to functionalities 412 of the application 408 in the class of applications 404. As mentioned above with respect to FIG. 3, the supplemental information 410 may include metadata transformed from the ontology instance 406 and metadata inferred from the ontology instance 406 using logic rules generated based on the class ontology 402. The supplemental information 410 may be provided as input to an executable program 409 at runtime so as to enable the application functionalities 412 to be available via the executable program 409. As mentioned above with respect to FIG. 3, the programming interface generated based on the class ontology 402 may be provided to the executable program 409 for accessing the supplemental information 410 in the working memory at runtime.

Following the BPM class ontology example described in FIG. 13, the ontology instance 406 defining the employee on-boarding process may be expressed as triples in the working memory:

(acme-bpmn-hr:iAcmeOnboardingProcess, rdf:type, bpmn:Process) (acme-bpmn-hr:iAcmeOnboardingProcess, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iAcmeOnboardingProcess, bpmn:hasFlowElement, acme-bpmn-hr:iAcmeStartOnboarding) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, bpmn:StartEvent) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iAcmeStartOnboarding, bpmn:hasEventDefinitions, acme-bpmn-hr:iStartOnboardingMessageDefinition) (acme-bpmn-hr:iStartOnboardingMessageDefinition, rdf:type, bpmn:MessageEventDefinition) (acme-bpmn-hr:iStartOnboardingMessageDefinition, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iStartOnboardingMessageDefinition, bpmn:hasEventDefinitions, acme-bpmn-hr:iFirstNameMappingElm) (acme-bpmn-hr:iStartOnboardingMessageDefinition, bpmn:hasEventDefinitions, acme-bpmn-hr:iLastNameMappingElm) (acme-bpmn-hr:iFirstNameMappingElm, rdf:type, bpmn:MappingElement) (acme-bpmn-hr:iFirstNameMappingElm, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:sourceFieldName, “GivenName”) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:sourceFieldType, “xsd:string”) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:targetFieldName, “hr:firstName”) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:targetFieldType, “xsd:string”) (acme-bpmn-hr:iLastNameMappingElm, rdf:type, bpmn:MappingElement) (acme-bpmn-hr:iLastNameMappingElm, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iLastNameMappingElm, bpmn:sourceFieldName, “FamilyName”) (acme-bpmn-hr:iLastNameMappingElm, bpmn:sourceFieldType, “xsd:string”) (acme-bpmn-hr:iLastNameMappingElm, bpmn:targetFieldName, “hr:lastName”) (acme-bpmn-hr:iLastNameMappingElm, bpmn:targetFieldType, “xsd:string”) At runtime, the executable program 409 may be using the BPM definition above along with the corresponding generated logic rules to have a complete definition of the metadata defining the employee on-boarding application.

In order to increase the runtime performance of the executable program 409 with the supplemental functionalities, it is possible to augment the ontology instance 406 with entailments computed by the logic rules generated based on the class ontology 402 to have more comprehensive supplemental information. As an example, the employee on-boarding process may be augmented with entailments of the BPM class ontology using the generated logic rules to obtain the following supplemental information:

(acme-bpmn-hr:iAcmeOnboardingProcess, rdf:type, owl:Thing) (acme-bpmn-hr:iAcmeOnboardingProcess, rdf:type, bpmn:FlowElementContainer) (acme-bpmn-hr:iAcmeOnboardingProcess, rdf:type, bpmn:Process) (acme-bpmn-hr:iAcmeOnboardingProcess, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iAcmeOnboardingProcess, bpmn:hasFlowElement, acme-bpmn-hr:iAcmeStartOnboarding) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, owl:Thing) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, bpmn:Event) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, bpmn:FlowElement) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, bpmn:FlowNode) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, bpmn:MessageStartEvent) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, bpmn:StartEvent) (acme-bpmn-hr:iAcmeStartOnboarding, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iAcmeStartOnboarding, bpmn:hasEventDefinitions, acme-bpmn-hr:iStartOnboardingMessageDefinition) (acme-bpmn-hr:iAcmeStartOnboarding, bpmn:hasMessageEventDefinitions, acme-bpmn-hr:iStartOnboardingMessageDefinition) (acme-bpmn-hr:iAcmeStartOnboarding, bpmn:topReactiveHelper, “iMessageStartEvent”) (acme-bpmn-hr:iAcmeStartOnboarding, top:consistent _(—) on, bpmn:hasEventDefinitions) (acme-bpmn-hr:iStartOnboardingMessageDefinition, rdf:type, owl:Thing) (acme-bpmn-hr:iStartOnboardingMessageDefinition, rdf:type, bpmn:EventDefinition) (acme-bpmn-hr:iStartOnboardingMessageDefinition, rdf:type, bpmn:MessageEventDefinition) (acme-bpmn-hr:iStartOnboardingMessageDefinition, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iStartOnboardingMessageDefinition, bpmn:hasEventDefinitions, acme-bpmn-hr:iFirstNameMappingElm) (acme-bpmn-hr:iStartOnboardingMessageDefinition, bpmn:hasEventDefinitions, acme-bpmn-hr:iLastNameMappingElm) (acme-bpmn-hr:iFirstNameMappingElm, rdf:type, owl:Thing) (acme-bpmn-hr:iFirstNameMappingElm, rdf:type, bpmn:SupportingElement) (acme-bpmn-hr:iFirstNameMappingElm, rdf:type, bpmn:MappingElement) (acme-bpmn-hr:iFirstNameMappingElm, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:sourceFieldName, “GivenName”) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:sourceFieldType, “xsd:string”) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:targetFieldName, “hr:firstName”) (acme-bpmn-hr:iFirstNameMappingElm, bpmn:targetFieldType, “xsd:string”) (acme-bpmn-hr:iLastNameMappingElm, rdf:type, owl:Thing) (acme-bpmn-hr:iLastNameMappingElm, rdf:type, bpmn:SupportingElement) (acme-bpmn-hr:iLastNameMappingElm, rdf:type, bpmn:MappingElement) (acme-bpmn-hr:iLastNameMappingElm, rdf:type, owl:NamedIndividual) (acme-bpmn-hr:iLastNameMappingElm, bpmn:sourceFieldName, “FamilyName”) (acme-bpmn-hr:iLastNameMappingElm, bpmn:sourceFieldType, “xsd:string”) (acme-bpmn-hr:iLastNameMappingElm, bpmn:targetFieldName, “hr:lastName”) (acme-bpmn-hr:iLastNameMappingElm, bpmn:targetFieldType, “xsd:string”) It is noted that the triples in bold are the inferred entailments (metadata), while the rest of the triples are metadata transformed from the BPM ontology instance.

The supplemental information with augmented metadata contains additional information. For example, the named individual acme-bpmn-hr:iAcmeStartOnboarding is not only a bpmn:StartEvent as the asserted facts indicated, but also of type bpmn:MAessageStartEvent as a consequence of the equivalent class definition present in the ontology. This supplemental information corresponding to the employee on-boarding application functionalities may be stored in the working memory and become the metadata information used by the executable program 409 at runtime. As a result, in some embodiments, the generated logic rules may no longer be needed by the executable program 409 once the metadata information is augmented with the inferred entailments. It may be needed when a new application is defined using a new instance of the BPM class ontology.

FIG. 5 is a flowchart 500 of a method of providing supplemental functionalities for a computer program via ontology instances, in accordance with some embodiments.

In an operation 502, a computer program associated with an ontology may be caused to be run. The ontology may include information indicating attributes for a set of applications (e.g., a class of BPM application). Operation 502 may be performed by one or more processors that are the same as or similar to the processors 106, in accordance with one or more embodiments.

In an operation 504, an instance of the ontology may be obtained. The ontology instance may correspond to an application of the set of applications. Operation 504 may be performed by an ontology management subsystem that is the same as or similar to the ontology management subsystem 112, in accordance with one or more embodiments.

In an operation 506, supplemental information for the computer program may be generated based on the ontology instance. The supplemental information may be related to functionalities of the application. Operation 506 may be performed by a supplemental information generation subsystem that is the same as or similar to the supplemental information generation subsystem 114, in accordance with one or more embodiments.

In an operation 508, the supplemental information may be provided as input to the computer program to enable the functionalities of the application to be available via the computer program. Operation 508 may be performed by one or more processors that are the same as or similar to the processors 106, in accordance with one or more embodiments.

It should be understood that in some embodiments, operations 504-508 may be repeated to enable different functionalities of another application in the set of application to be available via the computer program. For example, another ontology instance corresponding to the other application may be obtained, and another supplemental information related to the different functionalities may be generated based on the other ontology instance and provided as input to the computer program.

FIG. 6 is a flowchart 600 of a method of generating a programming interface and logic rules based on a class ontology, in accordance with some embodiments.

In an operation 602, an ontology associated with a class of applications may be obtained. Operation 602 may be performed by an ontology defining component that is the same as or similar to the ontology defining component 202, in accordance with one or more embodiments.

In an operation 604, a freeze may be assigned to the ontology that disables further modification of the ontology. In some embodiments, the freeze may be assigned once the ontology has been completed and validated to ensure the consistency of the ontology. Operation 604 may be performed by an ontology validation component that is the same as or similar to the ontology validation component 204, in accordance with one or more embodiments.

In an operation 606, class information may be extracted from the ontology. The class information may include, for example, class structures, data properties associated with each class, and the relationships between classes. Operation 606 may be performed by a programming interface generation component that is the same as or similar to the programming interface generation component 206, in accordance with one or more embodiments.

In an operation 608, a programming interface may be generated based on the class information. The programming interface may be in the form of computer code in a programming language and may be used by a computer program (e.g., the computer program of FIG. 5) for accessing metadata information stored in the working memory. Operation 608 may be performed by a programming interface generation component that is the same as or similar to the programming interface generation component 206, in accordance with one or more embodiments.

In an operation 610, axiom information may be extracted from the ontology. Operation 610 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 612, logic rules may be generated based on the axiom information. The logic rules may be used to infer additional metadata, e.g., entailments on the objects of the ontology. Operation 612 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 614, logic rules may be augmented with runtime rules of the computer program. The augmented rules may be used for executing the computer program at runtime. Operation 614 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

Functionalities Provided Via Domain-Specific and General Ontology Instances

In addition to a class ontology describing a class of application, a particular application often needs to access domain-specific information. The traditional approach to add domain-specific information to an application is to have programmers write application code embodying the domain-specific knowledge in some programming language, or to have the application code be generated automatically based on some information gathered from a business analyst or a domain expert. FIGS. 7-9 illustrate an example of providing supplemental functionalities for a computer program (e.g., an executable program or other computer program) via a domain-specific ontology and a general ontology instance. That is, a computer program may be specialized in a particular domain of interest using a domain-specific ontology without changing the computer code of the computer program.

As shown in FIG. 7, a general ontology 702 is obtained. The general ontology 702 may be a domain meta model ontology designed to describe the class structure of any domain-specific ontologies 704. The domain-specific ontologies 704 may be associated with domains of interest 706, such as the ones listed in Table 1. The general ontology 702 may not be modified and may have no dependency on any domain-specific ontologies 704. This may become a known and explicit structure used by an executable program 709 to interpret the structure of a particular domain-specific ontology 710. An example general ontology (domain meta model ontology) has been shown above with respect to FIG. 14, and an example domain-specific ontology 710 in the human resource domain has been shown above with respect to FIG. 15. The general ontology in FIG. 14 can be used to interpret any domain-specific ontologies 704, including the human resource domain ontology in FIG. 15.

As mentioned above, both class information and axiom information may be extracted from the general ontology 702 and used to generate the programming interface and logic rules, respectively. Similarly, axiom information may be extracted from the domain-specific ontology 710 and used to generate the specific logic rules. The specific logic rules may be applied to an instance 708 of the general ontology 702 by the executable program 709. Following the human resource domain ontology example described in FIG. 15, the axioms of the human resource domain ontology may be captured in logic rules that are generated automatically from the human resource domain ontology using a computer program. For example, the axiom information includes axioms for the class BoardDirector. The restriction that a BoardDirector must have a role of type BoardDirectorRole is expressed as:

# hr:hasRole some hr:BoardDirectorRole [n=hr12, s=100]: (?s rdf:type hr:BoardDirector).(?s hr:hasRole ?o).(?o rdf:type hr:BoardDirectorRole) −> (?s top:consistent_on hr:hasRole) [n=hr13, s=10]: (?s rdf:type hr:BoardDirector).not(?s top:consistent_on hr:hasRole) −> (?s rdf:type owl:Nothing) The first rule indicates that a BoardDirector with a role of BoardDirectorRole is a consistent individual with regard to the property hasRole. The second rule indicates the complement of the first rule, meaning that a BoardDirector that does not have a consistent relationship on the property hasRole is an inconsistent individual (indicated as a member of Nothing).

Referring back to FIG. 7, the instance 708 of the general ontology 702 may be obtained. The general ontology instance 708 may be based on the domain-specific ontology 710 and correspond to an application 712 in the domain of interest associated with the domain-specific ontology 710. Supplemental information 714 may be generated for the executable program 709 based on the general ontology instance 708. The supplemental information 714 may be related to the functionalities 716 of the application 712. The supplemental information 714 may be provided as input to the executable program 709 at runtime so as to enable the application functionalities 716 to be available via the executable program 709. As mentioned above with respect to FIG. 3, the programming interface generated based on the general ontology 702 may be provided to the executable program 709 for accessing the supplemental information 714 in a working memory at runtime. The executable program 709 may also include the rule engine 310 to execute the generated logic rules associated with programming interface and the domain-specific ontology 710. At runtime, the executable program 709 may be provided with the supplemental information 714 (e.g., domain-specific metadata information). This supplemental information 714 may be accessed programmatically using the generated programming interface (e.g., class structure). Logic rules may be supplied for the executable program 709 without the need to modify the computer code of the executable program. As mentioned above, the runtime rules govern the execution of the executable program 709 and do not alter the ontological definition of the general and domain-specific ontologies 702 and 710. The runtime rules may be used in conjunction with the generated logic rules from the axioms of the domain-specific ontology 710 and applied on the inputted supplemental information 714.

Following the domain meta model ontology example in FIG. 14 and the human resource domain ontology example described in FIG. 15, the ontology instance 708 is an instance of the example domain meta model ontology, the domain-specific ontology 710 is the example human resource domain ontology, and the application 712 is a human resource application. The example human resource domain ontology may be described using the instance of the domain meta model ontology. The domain meta model ontology can be used to describe any domain-specific ontology, which is an important productivity gain since the class of applications only needs to know the structure of the domain meta model ontology, using the generated classes in any programming language, to discover any domain-specific ontology without the need to change the executable program 709. As an example, the following is an extract of the domain meta model ontology instance generated automatically using a computer program with the example human resource domain ontology as input:

(i_hr:BoardDirector, rdf:type, domain:ClassMetadata) (i_hr:BoardDirector, domain:className, “hr:BoardDirector”) (i_hr:BoardDirector, domain:directSubClassOf, i_hr:Person) (i_hr:BoardDirector, domain:allProperties, i_hr:BoardDirector-hr:firstName) (i_hr:BoardDirector, domain:allProperties, i_hr:BoardDirector-hr:hasRole) (i_hr:BoardDirector, domain:allProperties, i_hr:BoardDirector-hr:lastName) (i_hr:BoardDirector-hr:hasRole, rdf:type, domain:PropertyMetadata) (i_hr:BoardDirector-hr:hasRole, domain:propertyName, “hr:hasRole”) (i_hr:BoardDirector-hr:hasRole, domain:range, “hr:Role”) (i_hr:BoardDirector-hr:hasRole, domain:hasSomeValueFromRestriction, “hr:BoardDirectorRole”) (i_hr:BoardDirector-hr:hasRole, domain:isFunctionalProperty, “0”) (i_hr:BoardDirector-hr:hasRole, domain:isObjectProperty, “1”) In the extract above, the class hr:BoardDirector is described using an instance of domain:ClassMetadata named i_hr:BoardDirector. The property hr:hasRole is described using an instance of domain:PropertyMetadata and the restriction that a BoardDirector must have a role with value from the class hr:BoardDirectorRole has been captured.

The metadata describing the human resource domain ontology may be augmented with entailments from the domain meta model ontology (inferred metadata). This augments the metadata information with the inferred class structure. Using the human resource domain ontology as input, the augmented metadata information obtained after applying the logic rules generated based on the domain meta model ontology is:

i _(—) hr:BoardDirector, rdf:type, owl:Thing) (i _(—) hr:BoardDirector, rdf:type, domain:DomainMetaModel) (i_hr:BoardDirector, rdf:type, domain:ClassMetadata) (i_hr:BoardDirector, domain:className, “hr:BoardDirector”) (i_hr:BoardDirector, domain:directSubClassOf, i_hr:Person) (i _(—) hr:BoardDirector, domain:subClassOf, i _(—) owl:Thing) (i _(—) hr:BoardDirector, domain:subClassOf, i _(—) hr:ResourceManagement) (i _(—) hr:BoardDirector, domain:subClassOf, i _(—) hr:Person) (i_hr:BoardDirector, domain:allProperties, i_hr:BoardDirector-hr:firstName) (i_hr:BoardDirector, domain:allProperties, i_hr:BoardDirector-hr:hasRole) (i_hr:BoardDirector, domain:allProperties, i_hr:BoardDirector-hr:lastName) (i _(—) hr:BoardDirector-hr:hasRole, rdf:type, owl:Thing) (i _(—) hr:BoardDirector-hr:hasRole, rdf:type, domain:DomainMetaModel) (i_hr:BoardDirector-hr:hasRole, rdf:type, domain:PropertyMetadata) (i_hr:BoardDirector-hr:hasRole, domain:propertyName, “hr:hasRole”) (i_hr:BoardDirector-hr:hasRole, domain:range, “hr:Role”) (i_hr:BoardDirector-hr:hasRole, domain:hasSomeValueFromRestriction, “hr:BoardDirectorRole”) (i_hr:BoardDirector-hr:hasRole, domain:isFunctionalProperty, “0”) (i_hr:BoardDirector-hr:hasRole, domain:isObjectProperty, “1”) The inferred entailments (additional supplemental information) are indicated in bold above.

In some embodiments, the expressibility of the executable program may be augmented by integrating the general ontology into a class ontology describing a class of applications. The expressibility of the resulting executable program can be increased by integrating the general ontology (e.g., a domain meta model ontology) with the class ontology. This integration may be done by importing the general ontology into the class ontology in order to specify domain-specific dependency.

As an example, it may be desired to inform the mapping algorithm of axioms present in the target elements, e.g., if the property is a functional property or the ability to ensure the validity of the type is used in the range of the target element. Specifically, consider the equivalent specification of the above-mentioned example of an employee on-boarding process using the instance of the domain metal model ontology as metadata describing the human resource domain ontology example:

# # Metadata describing Acme Employee On-Boarding Process # (acme-bpmn-hr2:iAcmeOnboardingProcess, rdf:type, bpmn2:Process) (acme-bpmn-hr2:iAcmeOnboardingProcess, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iAcmeOnboardingProcess, bpmn2:hasFlowElement, acme-bpmn-hr2:iOnboardingStartEvent) (acme-bpmn-hr2:iOnboardingStartEvent, rdf:type, bpmn2:StartEvent) (acme-bpmn-hr2:iOnboardingStartEvent, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iOnboardingStartEvent, bpmn2:hasEventDefinitions, acme-bpmn-hr2:iOnboardingStartEventDefinition) (acme-bpmn-hr2:iOnboardingStartEventDefinition, rdf:type, bpmn2:MessageEventDefinition) (acme-bpmn-hr2:iOnboardingStartEventDefinition, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iOnboardingStartEventDefinition, bpmn2:hasMappingElements, acme-bpmn-hr2:iOnboardingEmployeeMappingElement) (acme-bpmn-hr2:iOnboardingEmployeeMappingElement, rdf:type, bpmn2:MappingElement) (acme-bpmn-hr2:iOnboardingEmployeeMappingElement, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iOnboardingEmployeeMappingElement, bpmn2:hasDomainEntityMappingDefinition, acme-bpmn-hr2:iEmployeeMappingDefinition) (acme-bpmn-hr2:iEmployeeMappingDefinition, rdf:type, domain:DomainEntityMappingDefinition) (acme-bpmn-hr2:iEmployeeMappingDefinition, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iEmployeeMappingDefinition, domain:entityClassMetadata, i _(—) hr:Employee) (acme-bpmn-hr2:iEmployeeMappingDefinition, domain:hasDomainPropertyMappingDefinitions, acme-bpmn-hr2:iFirstNameMappingDefinition) (acme-bpmn-hr2:iEmployeeMappingDefinition, domain:hasDomainPropertyMappingDefinitions, acme-bpmn-hr2:iLastNameMappingDefinition) (acme-bpmn-hr2:iFirstNameMappingDefinition, rdf:type, domain:DomainPropertyMappingDefinition) (acme-bpmn-hr2:iFirstNameMappingDefinition, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iFirstNameMappingDefinition, domain:sourceFieldName, “GivenName”) (acme-bpmn-hr2:iFirstNameMappingDefinition, domain:sourceFieldType, “xsd:string”) (acme-bpmn-hr2:iFirstNameMappingDefinition, domain:targetPropertyMetadata, i _(—) hr:Employee-firstName) (acme-bpmn-hr2:iLastNameMappingDefinition, rdf:type, domain:DomainPropertyMappingDefinition) (acme-bpmn-hr2:iLastNameMappingDefinition, rdf:type, owl:NamedIndividual) (acme-bpmn-hr2:iLastNameMappingDefinition, domain:sourceFieldName, “FamilyName”) (acme-bpmn-hr2:iLastNameMappingDefinition, domain:sourceFieldType, “xsd:string”) (acme-bpmn-hr2:iLastNameMappingDefinition, domain:targetPropertyMetadata, i _(—) hr:Employee-lastName) # # Metadata describing HR sample Domain Ontology # (i _(—) hr:Employee, rdf:type, domain:ClassMetadata) (i_hr:Employee, rdf:type, owl:NamedIndividual) (i_hr:Employee, domain:className, “hr:Employee”) (i_hr:Employee, domain:directProperties, i_hr:Employee-firstName) (i_hr:Employee, domain:directProperties, i_hr:Employee-lastName) (i _(—) hr:Employee-firstName, rdf:type, domain:PropertyMetadata) (i_hr:Employee-firstName, rdf:type, owl:NamedIndividual) (i_hr:Employee-firstName, domain:propertyName, “hr:firstName”) (i_hr:Employee-firstName, domain:range, “xsd:string”) (i_hr:Employee-firstName, domain:isFunctionalProperty, “1”) (i_hr:Employee-firstName, domain:isObjectProperty, “0”) (i _(—) hr:Employee-lastName, rdf:type, domain:PropertyMetadata) (i_hr:Employee-lastName, rdf:type, owl:NamedIndividual) (i_hr:Employee-lastName, domain:propertyName, “hr:lastName”) (i_hr:Employee-lastName, domain:range, “xsd:string”) (i_hr:Employee-lastName, domain:isFunctionalProperty, “1”) (i_hr:Employee-lastName, domain:isObjectProperty, “0”) In the domain:DomainEntityMappingDefinition the Domain Entity is specified as an instance of domain:ClassMetadata (range of property domain:entityClassMetadata is of type domain:ClassMetadata; see highlights above in bold). Also, the Domain Property Mapping Definition (instances of domain:DomainPropertyMappingDefinition) has an instance of domain:PropertyAMetadata for range of domain:targetPropertyMetadata (see highlights above in bold). This provides a rich metadata description of the target domain-specific entities with full access to axioms and restrictions providing the ability of the executable program to enforce or validate them at runtime.

FIG. 8 is a flowchart 800 of a method of providing supplemental functionalities for an executable program via a domain-specific ontology and an instance of a general ontology, in accordance with some embodiments.

In an operation 802, a computer program may be caused to be run. Operation 802 may be performed by one or more processors that are the same as or similar to the processors 106, in accordance with one or more embodiments.

In an operation 804, a general ontology and a domain-specific ontology may be obtained. The domain-specific ontology may be associated with a domain of interest, and the general ontology can be used to interpret the domain-specific ontology. Operation 804 may be performed by an ontology management subsystem that is the same as or similar to the ontology management subsystem 112, in accordance with one or more embodiments.

In an operation 806, an instance of the general ontology may be obtained. The general ontology instance may be based on the domain-specific ontology and correspond to an application associated with the domain of interest. Operation 806 may be performed by an ontology management subsystem that is the same as or similar to the ontology management subsystem 112, in accordance with one or more embodiments.

In an operation 808, supplemental information for the computer program may be generated based on the general ontology instance. The supplemental information may be related to functionalities of the application. Operation 808 may be performed by a supplemental information generation subsystem that is the same as or similar to the supplemental information generation subsystem 114, in accordance with one or more embodiments.

In an operation 810, the supplemental information may be provided as input to the computer program to enable the functionalities of the application to be available via the computer program. Operation 810 may be performed by one or more processors that are the same as or similar to the processors 106, in accordance with one or more embodiments.

It should be understood that, in some embodiments, operations 804-810 may be repeated to enable different functionalities of another application in a different domain of interest to be available via the computer program. For example, another domain-specific ontology in the different domain of interest and another general ontology instance corresponding to the other application may be obtained, and another supplemental information related to the different functionalities may be generated based on the other general ontology instance and domain-specific ontology and provided as input to the computer program.

FIG. 9 is a flowchart 900 of a method of generating a programming interface and logic rules based on a domain-specific ontology and a general ontology instance, in accordance with some embodiments.

In an operation 902, a general ontology and a domain-specific ontology may be obtained. Operation 902 may be performed by an ontology defining component that is the same as or similar to the ontology defining component 202, in accordance with one or more embodiments.

In an operation 904, a freeze may be assigned to the general ontology and domain-specific ontology that disables further modification of the ontologies. In some embodiments, the freeze may be assigned once an ontology has been completed and validated to ensure the consistency of the ontology. Operation 904 may be performed by an ontology validation component that is the same as or similar to the ontology validation component 204, in accordance with one or more embodiments.

In an operation 906, class information may be extracted from the general ontology. The class information may include, for example, class structures, data properties associated with each class, and the relationships between classes. Operation 906 may be performed by a programming interface generation component that is the same as or similar to the programming interface generation component 206, in accordance with one or more embodiments.

In an operation 908, a programming interface may be generated based on the class information of the general ontology. The programming interface may be in the form of computer code in a programming language and may be used by a computer program (e.g., the computer program of FIG. 8) for accessing metadata information stored in the working memory. Operation 908 may be performed by a programming interface generation component that is the same as or similar to the programming interface generation component 206, in accordance with one or more embodiments.

In an operation 910, axiom information may be extracted from the general ontology. Operation 910 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 912, general logic rules may be generated based on the axiom information of the general ontology. The general logic rules may be used to infer additional metadata, e.g., entailments on the objects of the domain-specific ontology. Operation 912 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 914, axiom information may be extracted from the domain-specific ontology. Operation 914 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 916, specific logic rules may be generated based on the axiom information of the domain-specific ontology. The specific logic rules may be applied to manipulate the supplemental information by the computer program. Operation 916 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 918, general and specific logic rules may be augmented with runtime rules of the computer program. The augmented rules may be used for executing the computer program at runtime. Operation 918 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

Functionalities Provided Via Domain-Specific and Class Ontology Instances

One aspect of this invention by which one can generate a class of applications from a class ontology described in FIGS. 4-6 can be combined with the other aspect of this invention described in FIGS. 7-9 to generate a specialized application with domain-specific knowledge that belongs to a class of applications.

As an example, an application for on-boarding new employees by the human resource department of an organization is an application that belongs to the class of BPM applications. This application is specialized with human resource domain knowledge. The specialization of the application is two-fold: 1) the new employee on-boarding business process is an application that belongs to the class of BPM applications, and 2) the inclusion of human resource domain-specific knowledge specializes the on-boarding process by using data elements or attributes that are specific to an organization or industry. Combining a class of applications associated with a class ontology with a domain-specific ontology may result in a semantically informed computer program (e.g., an executable program) that is a programmatic representation of the class of applications applied to the specific domain by the underlying ontologies.

FIGS. 10-12 illustrate an example of providing supplemental functionalities for a computer program (e.g., an executable program or other computer program) via a domain-specific ontology and a class ontology instance. As shown in FIG. 10, an ontology 1002 (a class ontology) is obtained. The class ontology 1002 may include information indicating attributes for a class of applications 1004. The class of applications 1004 may include the ones listed in Table 1. On the other hand, a domain-specific ontology 1014 may be selected from a set of domain-specific ontologies 1006, which are associated with a set of domains of interest 1008, such as such as the ones listed in Table 1. An example BPM class ontology has been shown above with respect to FIG. 13, and an example human resource domain-specific ontology has been shown above with respect to FIG. 15.

As mentioned above, both class information and axiom information may be extracted from the class ontology 1002 and used to generate the programming interface and logic rules, respectively. Similarly, axiom information may be extracted from the domain-specific ontology 1014 and used to generate the specific logic rules. The specific logic rules may be applied to an instance 1010 of the class ontology 1002 by an executable program 1009. The class ontology instance 1010 may be based on the domain-specific ontology 1014 and correspond to an application 1012 of the class of applications 1004 that is associated with the domain of interest.

Supplemental information 1016 may be generated for the executable program 1009 based on the class ontology instance 1010. The supplemental information 1016 may be related to the functionalities 1018 of the application 1012. The supplemental information 1016 may be provided as input to the executable program 1009 at runtime so as to enable the application functionalities 1018 to be available via the executable program 1009. As indicated above with respect to FIG. 3, the programming interface generated based on the class ontology 1002 may be provided to the executable program 1009 for accessing the supplemental information 1016 in a working memory at runtime. The executable program 1009 may also include the rule engine 310 to execute the generated logic rules associated with programming interface and the domain-specific ontology 1014. At runtime, the executable program 1009 may be provided with the supplemental information 1016 (e.g., domain-specific metadata information). This supplemental information 1016 may be accessed programmatically using the generated programming interface (e.g., class structure). Logic rules may be supplied for the executable program 1009 without the need to modify the computer code of the executable program 1009. As mentioned above, the runtime rules govern the execution of the executable program 1009 and do not alter the ontological definition of the class and domain-specific ontologies 1002, 1014. The runtime rules may be used in conjunction with the generated logic rules from the axioms of the domain-specific ontology 1014 and applied on the input supplemental information 1016.

FIG. 11 is a flowchart 1100 of a method of providing supplemental functionalities for a computer program (e.g., an executable program or other computer program) via a domain-specific ontology and an instance of an ontology describing a class of applications, in accordance with some embodiments.

In an operation 1102, a computer program associated with an ontology may be caused to be run. The ontology may include information indicating attributes for a set of applications (a class ontology for a class of applications). Operation 1102 may be performed by one or more processors that are the same as or similar to the processors 106, in accordance with one or more embodiments.

In an operation 1104, a domain-specific ontology may be obtained. The domain-specific ontology may be associated with a domain of interest. Operation 1104 may be performed by an ontology management subsystem that is the same as or similar to the ontology management subsystem 112, in accordance with one or more embodiments.

In an operation 1106, an instance of the class ontology may be obtained. The class ontology instance may be based on the domain-specific ontology and correspond to an application of the set of applications that is associated with the domain of interest. Operation 1106 may be performed by an ontology management subsystem that is the same as or similar to the ontology management subsystem 112, in accordance with one or more embodiments.

In an operation 1108, supplemental information for the computer program may be generated based on the class ontology instance. The supplemental information may be related to functionalities of the application. Operation 1108 may be performed by a supplemental information generation subsystem that is the same as or similar to the supplemental information generation subsystem 114, in accordance with one or more embodiments.

In an operation 1110, the supplemental information may be provided as input to the computer program to enable the functionalities of the application to be available via the computer program. Operation 1110 may be performed by one or more processors that are the same as or similar to the processors 106, in accordance with one or more embodiments.

It should be understood that, in some embodiments, operations 1106-1110 may be repeated to enable different functionalities of another application in the set of applications to be available via the computer program. For example, another class ontology instance corresponding to the other application may be obtained, and other supplemental information related to the different functionalities may be generated based on the other class ontology instance and the domain-specific ontology and provided as input to the computer program.

FIG. 12 is a flowchart 1200 of a method of generating a programming interface and logic rules based on a domain-specific ontology and a class ontology instance, in accordance with some embodiments.

In an operation 1202, a class ontology and a domain-specific ontology may be obtained. Operation 1202 may be performed by an ontology defining component that is the same as or similar to the ontology defining component 202, in accordance with one or more embodiments.

In an operation 1204, a freeze may be assigned to the class ontology and domain-specific ontology that disables further modification of the ontologies. In some embodiments, the freeze may be assigned once an ontology has been completed and validated to ensure the consistency of the ontology. Operation 1204 may be performed by an ontology validation component that is the same as or similar to the ontology validation component 204, in accordance with one or more embodiments.

In an operation 1206, class information may be extracted from the class ontology. The class information may include, for example, class structures, data properties associated with each class, and the relationships between classes. Operation 1206 may be performed by a programming interface generation component that is the same as or similar to the programming interface generation component 206, in accordance with one or more embodiments.

In an operation 1208, a programming interface may be generated based on the class information of the class ontology. The programming interface may be in the form of computer code in a programming language to be used by a computer program (e.g., the computer program of FIG. 11) for accessing metadata information stored in the working memory. Operation 1208 may be performed by a programming interface generation component that is the same as or similar to the programming interface generation component 206, in accordance with one or more embodiments.

In an operation 1210, axiom information may be extracted from the class ontology. Operation 1210 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 1212, logic rules may be generated based on the axiom information of the class ontology. The logic rules may be used to infer additional metadata, e.g., entailments on the objects of the domain-specific ontology. Operation 1212 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 1214, axiom information may be extracted from the domain-specific ontology. Operation 1214 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 1216, specific logic rules may be generated based on the axiom information of the domain-specific ontology. The specific logic rules may be applied to manipulate the supplemental information by the computer program. Operation 1216 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

In an operation 1218, logic rules and specific logic rules may be augmented with runtime rules of the computer program. The augmented rules may be used for executing the computer program at runtime. Operation 1218 may be performed by a logic rule generation component that is the same as or similar to the logic rule generation component 208, in accordance with one or more embodiments.

Creation of Ontologies

In some embodiments, ontology defining component 202 of the ontology management subsystem 112 may be configured to create and define an ontology from a set of business and technology assets including, but not limited to, data models, data dictionaries, data files/extracts, VSAM files, glossaries, source code, or business documentation (e.g., docx, csv, xlsx, etc.) associated with a business. For example, a business asset may include a document or set of documents (e.g., docx, csv, xlsx, etc.) that contains business logic that clients utilize to understand and build constraints of the data used to make business decisions. A technology asset may include a document or set of documents (e.g., data models, data dictionaries, source code, etc.) that provides a technical framework for business data to be stored/accessed and have business rules applied to for a business to function on a daily basis. In some embodiments, ontology defining component 202 may create and define a general ontology, a domain-specific ontology, or other ontology from a set of business and/or technology assets. In one use case, a set of documents related to claims adjudication or other components of a business may be obtained from a set of business assets, and a general human resources ontology may be created and defined based on the set of documents associated with the business assets.

An example of a data model associated with a set of business assets is represented below

CREATE TABLE container ( CONTAINER _ID DECIMAL NOT NULL, FACILITY_ID DECIMAL NOT NULL, CONTAINER_TYPE_ID DECIMAL NOT NULL, PRIMARY KEY (CONTAINER_ID)); COMMENT ON COLUMN CONTAINER.CONTAINER _ID IS ‘The identifier for the container.’; COMMENT ON COLUMN CONTAINER.FACILITY_ID IS ‘The identifier for the facility.’; COMMENT ON COLUMN CONTAINER.CONTAINER_TYPE_ID IS ‘The identifier for the container type.’; COMMENT ON TABLE CONTAINER IS ‘A detailed location which resides within a facility. Example of a container include “shelf 12a”, “file drawer AAA”, “bin 123”, “barrel 356”, “room 400a”, or any other detailed location.’ The above data model, as represented by the Data Definition Language (DDL), provides detailed information related to business and/or technical assets. In particular, the data model may include elements providing detailed information related to a container which resides within a facility. For example, the CONTAINER_ID may provide an identifier associated with the container, the FACILITY_ID may provide an identifier of a facility in which the container is located, and CONTAINER_TYPE may provide an identifier of a type of container.

An example of data dictionary definitions associated with a set of business assets is shown below in Table 2.

TABLE 2 Term Definition Format E.g. Other Diagnosis ICD-9-CM Char e.g., Varying lengths, Code diagnosis code, 486, read using “|” as no decimals, 49301,  the delimiter assume decimal 5821 point after 3^(rd) digit Long Complete Char Varying lengths, Description description of (250) read using “|” as the code the delimiter Short Shortened Char Description description of  (30) the code The above data dictionary definitions provide detailed information associated with various terms related to business and/or technical assets. For example, a term may provide a word, phrase, data descriptor, and the like expressing a concept or thing related to the business and/or technical asset, a definition may provide a statement of the meaning for each of the terms, a format may provide the structure of the data provided for each term, and other information (e.g., and other columns).

FIG. 16 illustrates another example of a data model associated with a set of technical assets. In particular, the illustrated data model may provide detailed information expressing the concept that an Agent may be a Person or an Agent may be an Organization. The data model includes an agent identifier which may provide agent identification. It may also include a type that describes if the Agent is a Person or an Organization. The data model may also provide a person identifier including a person identification, first name, middle name, last name, and gender. The data model may also include an organization identifier including an organization identification, organization name, and tax identifier.

Referring now to FIG. 17 (in which an ontology management subsystem 112 is shown), the ontology defining component 202 may include an asset gathering component 1702, an object extraction component 1704, an object conversion component 1706, a data relationship component 1708, a data cleaning component 1710, and an ontology creation component 1712 configured to create and define an ontology from a set of business and technology assets.

In some embodiments, asset gathering component 1702 may collect documentation associated with business and/or technical assets. Typically, businesses employ business logic that defines the framework, business rules, and constraints associated with a business's applications, functions, and the like. This business logic may include business definitions, rules, and constraints that have been built into the business application and program modules. For example, the documentation may be a data model that defines the construct of the data that is stored within a system, or stored procedures/source code that interact with the data structure to manage the data. The documentation may also include business rules that are maintained by a business user. In some embodiments, the documentation associated with business assets may include data models, data dictionaries, data files/extracts, VSAM files, glossaries, source code, business documentation (e.g., docx, csv, xlsx, etc.), and/or the like. In some embodiments, the documentation associated with technical assets may include data models, data dictionaries, source code, and/or the like.

In some embodiments, asset gathering component 1702 may automatically collect documentation associated with business and/or technical assets utilized by the business applications. In other embodiments, asset gathering component 1702 may collect documentation associated with business and/or technical assets selected by a business user. For example, asset gathering component 1702 may collect documentation associated from one or more various business and/or technical assets. In one use case, with respect to manufacturing business, asset gathering component 1702 may gather documentation related to content management systems from the business and/or technical assets of the manufacturing business.

In some embodiments, object extraction component 1704 may extract business objects from the documentation associated with business and/or technical assets. Business objects may include the business rules, business definitions, constraints, data points, data models, relationships, and/or the like embedded in the business and/or technical asset documentation. For example, data associated with the business and/or technical asset documentation may be automatically stripped back to the business rules, definitions, and constraints that will be converted into an ontology (e.g., classes, data properties, and object properties that may be defined from a data model; data dictionary may define business rules and additional comments on fields; etc.). In some embodiments, pre-determined data structures or terms are utilized to identify the business objects within the documentations. For example, object extraction component 1704 may analyze the documentation associated with business and/or technical assets to determine specific linking of data elements to identify one or more business objects.

In some embodiments, object conversion component 1706 may take the =business objects and convert them into a pre-defined data frame format (or other pre-defined data set format) for standardization. For example, the =business objects require conversion into a standardized data frame that comprises the business objects, each of the business object's source, data related to the business object, and/or the like. In some embodiments, object conversion component 1706 may create an auditable log to track and define the relationships between the converted data frame as non-relevant data may not be retained (e.g., a supertype/subtype relationship between tables may not be converted into an object property.) In one use case, object conversion component 1706 may convert business objects, stored in a various formats, to a standardized data frame. It should be noted that, although some embodiments describe the conversion of business objects into data frames and the use of such data frames, the business objects may in some embodiments be converted into other data sets (e.g., having other pre-defined formats other than a data frame format), and the other data sets may be used in some embodiments in lieu or in addition to the data frames.

An example of a data frame of business objects is shown below in Table 3.

TABLE 3 Class Properties Title Value Base Price comment A subtype of a PRICE COMPONENT Base Price priceComponentID restriction int Base Price source DDL Table Name is BASE PRICE Base Price subClass PriceComponent Billing Feature comment A subtype of a FEATURE TYPE Billing Feature featureTypeID restriction int Billing Feature source DDL Table Name is BILLING FEATURE Billing Feature subClass FeatureType Brand comment A subtype of a FEATURE TYPE Brand featureTypeID restriction int Brand source DDL Table Name is BRAND The above data frame may provide a standardization of the various business objects extracted from the documentation associated with business and/or technical assets. In particular, the data frame may include a class identifier indicating the class of each of the business objects, a property identifier indicating various attributes of each of the business objects, a title identifier used to identify the business objects, and a value providing the data values associated with each of the business objects.

In some embodiments, data relationship component 1708 may define one or more relationships inferred between the various data frames utilizing natural language processing (NLP) libraries. Typically, not all relationships are explicitly defined and must be inferred from the data associated with the business and/or technical assets. Data relationship component 1708 may utilize NLP libraries to identify common classes that may have a relationship or may be linked. In some embodiments, the relationships may be defined based on the relevance of the relationship and the data frame. For example, the NLP libraries may store one or more defined or inferred relationships between data elements of the data frame associated with a particular business objects. Data relationship component 1708 may utilize the NLP libraries to identify and link one or more relationships between the various data elements of the business objects extracted from the documentation associated with business and/or technical assets.

In some embodiments, data cleaning component 1710 may clean the data frames to standardize and remove unnecessary naming conventions. In some cases, specific naming conventions may have been used in legacy systems for purposes that are no longer applicable, e.g., “tbl_” was a naming convention that was added to the beginning of a table name in a relational database but is no longer needed. Such naming convention may be required to be removed prior to creating the respective ontology or during the process of creating the ontology. In some embodiments, data cleaning component 1710 may expand specific acronyms that are utilized for a particular business to make the ontology more specific. In some embodiments, data cleaning component 1710 may utilize a mapping file to standardize and/or customize the data within a particular data frame. An example of a data frame of business objects is shown below in Table 4.

TABLE 4 Target Object Table Name Class Name Class BASE_PRICE BasePrice Class BILLING_FEATURE BillingFeature Class BRAND Brand Class COLOR Color Class CONTAINER Container Class CONTAINER_TYPE ContainerType Class COST_COMPONENT CostComponent Class CURRENCY CurrencyMeasure Class DIMENSION Dimension Class Discount DiscountCode The above mapping file may provide a standardization of the various business objects extracted from the documentation associated with business and/or technical assets. In particular, the mapping file may expand specific acronyms that are utilized for a particular business to make the ontology more specific. For example, for each data element, the mapping file may include a the target object, the table name, and a converted class name for standardization.

In some embodiments, ontology creation component 1712 may convert the data frames into ontologies to be utilized to supplement the business applications with additional functionalities (e.g., as described herein). For example, once the business and technology assets have been converted into data frames and cleaned, the data frames may be automatically converted into RDF files or other file format (e.g., OWL) to provide supplemental functionality to the business applications. In some embodiments, ontology creation component 1712 may convert the data frames and any identified relationships between other data frames to create an ontology. In one use case, ontology creation component 1712 may create an ontology (e.g., RDF file) which defines and identifies the relationship between various data frames of various business objects extracted from the documentation associated with business and/or technical assets.

FIG. 18 is a flowchart 1800 of a method of creating an ontology from business and/or technology assets, in accordance with some embodiments.

In an operation 1802, documentation associated with business and/or technical assets may be collected. In some embodiments, the documentation associated with business assets may include data models, data dictionaries, data files/extracts, VSAM files, glossaries, source code, business documentation (e.g., docx, csv, xlsx, etc.), and/or the like. In some embodiments, the documentation associated with technical assets may include data models, data dictionaries, source code, and/or the like.

In an operation 1804, business objects may be extracted from the documentation associated with business and/or technical assets. In some embodiments, the data associated with the business and/or technical asset documentation may be automatically stripped back to the business rules, definitions, and constraints that will be converted into an ontology (e.g., classes, data properties, and object properties that may be defined from a data model; data dictionary may define business rules and additional comments on fields; etc.).

In an operation 1806, the business objects may be converted to a data frame having a pre-defined data frame format for standardization. For example, the business objects may require conversion into a standardized data frame that comprises the business objects, each of the business objects' source, data related the business objects, and/or the like. In some embodiments, an auditable log may be created to track and define the relationships between the converted data frame as non-relevant data may not be retained.

In an operation 1808, one or more relationships may be defined between the data frames. As an example, data relationship component 1708 may use NLP libraries to perform natural language processing on the data frames, the business objects, etc., to infer one or more relationships between the data frames. As another example, data relationship component 1708 may utilize NLP libraries to identify common classes that may have a relationship or may be linked. In some embodiments, the relationships may be defined based on the relevance of the relationship and the data frame.

In an operation 1810, the data frames may be cleaned to standardize and remove one or more naming conventions (e.g., unnecessary naming conventions). Such naming conventions may be required to be removed prior to creating the respective ontology or during the process of creating the ontology. In some embodiments, data cleaning component 1710 may expand specific acronyms that are utilized for a particular business to make the ontology more specific.

In an operation 1812, the data frames may be converted into ontologies to be utilized to supplement the business applications with additional functionalities. For example, once the business and technology assets have been converted into data frames and cleaned, the data frames may be automatically converted into RDF files to provide supplemental functionality to the business applications.

Updating of Existing Ontologies

In some embodiments, ontology defining component 202 of the ontology management subsystem 112 may be configured to reconcile existing ontologies utilizing business and technology assets. For example, ontology defining component 202 may customize or reconcile an existing ontology with data associated with specific business and/or technical assets. In some embodiments, the existing ontology may be an ontology created and defined by ontology defining component 202. In some embodiments, the reconciling process comprises two set of data: master data and derivative data. The master data represents an existing ontology (e.g., RDF file) and the derivative data is data derived from the business and/or technology assets. For example, the master data may include an industry standard healthcare ontology that contains HIPAA compliance and other ontologies essential for healthcare. A case may exist where a business user may want to customize the ontology with their business-specific assets. The business-specific asset may be considered the derivative data. Thus, ontology defining component 202 may reconcile or customize the existing healthcare ontology with the derivative data derived from the business-specific asset.

Referring now to FIG. 19 (in which an ontology management subsystem 112 is shown), the ontology defining component 202 may include a data conversion component 1902, an object extraction component 1904, a data frame comparison component 1906, a data relationship component 1908, a data cleaning component 1910, an ontology combination component 1912, and a data reconsolidation component 1914 configured to reconcile existing ontologies from a set of business and technology assets.

In one use case, ontology defining component 202 may determine the characteristics of existing ontologies and the derivative data. An example of a comparison of an existing ontology with derivative data associated with specific business and/or technical assets is shown below in Table 5.

TABLE 5 DDL DDL RDF RDF Conversion Count Conversion Count Info Tables 93 Classes 94 One more Class than Entity Tables Excluded 0 Ability to remove tables Columns 277 Data Properties 96 Table/column combination may be unique Columns Unique 97 Differences between columns Columns 49 Exclusion of Excluded classes based on column factors Relationship 114 Object Properties Relationship 52 Relationships Unique excluded Relationship 0 Relationship Excluded excluded because table excluded As shown above, the data frame comparison component 1906 and the data reconciliation component 1914 may be utilized to create a reconciliation between a business asset/technical asset (e.g., DDL, Virtual Storage Access Method (VSAM), OWL file, RDF file, etc.) and the created or reconciled ontology.

In some embodiments, the ontology management subsystem 112 may include an ontology defining component 202 configured to define an ontology. The ontology may be defined in any logic-based ontology language or specific version of logic-based ontology language using any semantic editor. The data conversion component 1902 may take the existing ontology and convert the ontology to a data frame for reconciliation purposes. For example, the data conversion component 1902 may convert an existing ontology to a data frame extracting the classes, data properties, and object properties of the ontology.

In some embodiments, the object extraction component 1904 may extract business objects from the documentation associated with business and/or technical assets. Business objects may include the business rules, business definitions, constraints, data points, data models, relationships, and the like embedded in the business and/or technical asset documentation. For example, data within the business and/or technical asset documentation may be automatically stripped back to the business rules, definitions, and constraints that will be converted into an ontology (e.g., classes, data properties, and object properties that may be defined from a data model; data dictionary may define business rules and additional comments on fields; etc.). In some embodiments, the business object may be converted to a data frame having a pre-defined format for standardization. For example, the business objects require conversion into a standardized data frame that comprises the business objects, each of the business object's source, data related to the business object, and/or the like. In some embodiments, an auditable log may be created to track and define the relationships between the converted data frame as non-relevant data may not be retained. In some embodiments, the data frames created from the business objects from the documentation associated with business and/or technical assets may be stored as derivative data.

In some embodiments, the data frame comparison component 1906 may reconcile the two set of data frames and identify if the ontology is missing any business and/or technology assets. For example, data frame comparison component 1906 may compare the existing ontology data frame with the business objects data frame to determine if any potential missing business and/or technology assets exist. In some embodiments, data frame comparison component 1906 may compare the data elements associated with each of the data frames (e.g., the data frame associated with the existing ontology and the data frames associated with the business objects extracted from the documentation associated with business and/or technical assets).

In some embodiments, a data relationship component 1908 may define relationships inferred between the various data frames utilizing NLP libraries. Typically, not all relationships are explicitly defined and must be inferred from the data associated with the business and/or technical assets. Data relationship component 1908 may utilize NLP libraries to identify common classes that may have a relationship or may be linked. In some embodiments, the relationships may be defined based on the relevance of the relationship and the data frame. In some embodiments, data frame comparison component 1906 may compare the relationships associated with each of the data frames (i.e., the data frame associated with the existing ontology and the data frames associated with the business objects extracted from the documentation associated with business and/or technical assets).

In some embodiments, data cleaning component 1910 may clean the data frames to standardize and remove unnecessary naming conventions. In some cases, specific naming conventions may have been used in legacy systems for purposes that are no longer applicable, e.g., “tbl_” was a naming convention that was added to the beginning of a table name in a relational database but is no longer needed. Such naming convention may be required to be removed prior to creating the respective ontology or during the process of creating the ontology. In some embodiments, data cleaning component 1910 may expand specific acronyms that are utilized for a particular business to make the ontology more specific. In some embodiment, data cleaning component 1910 may allow the user to specify which source components within business asset/technical asset (e.g., DDL, Virtual Storage Access Method (VSAM), OWL file, RDF file, etc.) captured within a data frame should be transformed into an ontology object, captured within another data frame. For example, the user may decide that they do not wish to convert a column called “Discount” within the table “PRICE” into a data object called “discount” with the domain of “Price”. Any type of source component may be included or excluded depending upon the wishes of the user of cleaning component 1910. Some embodiments of cleaning component 1910 also allow for a cascading exclusion of objects. The user may to exclude a complete source business asset/technical asset (e.g. table, class, VSAM table, etc.), all of the columns and relationships of the table will automatically also be excluded from becoming data properties, object properties with the domain of the class what would have been created. For example, if a technical asset (table/ddl) called “PRICE” was excluded from transformation into a Class called “Price,” and “PRICE” contained a column called “Discount”, then “Discount” would also be excluded from being transformed into a data property “discount.”

In some embodiments, an ontology combination component 1912 may use the master and the derivative data to generate an updated ontology. As an example, ontology combination component 1912 may modify existing data frames associated with the existing ontology or add new data frames to the existing ontology to include data elements and/or relationships from the data frames associated with the business objects extracted from the documentation associated with business and/or technical assets. In some embodiments, the data reconciliation component 1912 may identify portions of the derivative data as missing from an existing ontology). Data combination component 1912 may add (to the existing ontology) only the portion of the derivative data that was identified as missing from the existing ontology).

FIG. 20 is a flowchart 2000 of a method of reconciling data from business and/or technology assets into an existing ontology, in accordance with some embodiments.

In an operation 2002, an existing ontology and documentation associated with the business and/or technical assets may be collected. In some embodiments, master data may be associated with the existing ontology and derivative data may be associated with the documentation (associated with the business and/or technical assets).

In an operation 2004, the master data associated with the existing ontology and the derivative data are converted into corresponding master and derivative data frames.

In an operation 2006, the data frames are compared and a determination is made whether at least some of the derivative data is not in the existing ontology. As an example, if any of the derivative data is not represented in the existing ontology, the existing ontology may be updated based on the missing derivative data, the data frames corresponding to the missing derivative data, etc.

In an operation 2008, one or more relationships may be defined between the data frames. As an example, data relationship component 1908 may use NLP libraries to perform natural language processing on the data frames, the business objects, etc., to infer one or more relationships between the data frames. As another example, data relationship component 1908 may utilize NLP libraries to identify common classes that may have a relationship or may be linked. In some embodiments, the relationships may be defined based on the relevance of the relationship and the data frame.

In an operation 2010, the data frames may be cleaned to standardize and remove one or more naming conventions (e.g., unnecessary naming conventions) may be removed. As an example, such naming conventions may be required to be removed prior to creating the respective ontology or during the process of creating the ontology. In some embodiments, data cleaning component 1910 may expand specific acronyms that are utilized for a particular business to make the ontology more specific.

In an operation 2012, the existing ontology may be updated with the data frames corresponding to the derivative data that are determined not to be in the existing ontology. In some embodiments, both the derivative data that are represented in the existing ontology and the derivative data missing from the existing ontology (or their corresponding data frames) may be used to update the existing ontology (e.g., where reconciliation to identify aspects of the derivative data is missing in the existing ontology is not initially performed).

The methods described herein may be implemented in one or more processing devices (e.g., a digital processor, an analog processor, a digital circuit designed to process information, an analog circuit designed to process information, a state machine, and/or other mechanisms for electronically processing information). The one or more processing devices may include one or more devices executing some or all of the operations of the methods in response to instructions stored electronically on an electronic storage medium. The one or more processing devices may include one or more devices configured through hardware, firmware, and/or software to be specifically designed for execution of one or more of the operations of the methods.

As used throughout this application, terms describing conditional relationships, e.g., “in response to X, Y,” “upon X, Y,” “if X, Y,” “when X, Y,” and the like, encompass causal relationships in which the antecedent is a necessary causal condition, the antecedent is a sufficient causal condition, or the antecedent is a contributory causal condition of the consequent, e.g., “state X occurs upon condition Y obtaining” is generic to “X occurs solely upon Y” and “X occurs upon Y and Z.” Such conditional relationships are not limited to consequences that instantly follow the antecedent obtaining, as some consequences may be delayed, and in conditional statements, antecedents are connected to their consequents, e.g., the antecedent is relevant to the likelihood of the consequent occurring. Statements in which a plurality of attributes or functions are mapped to a plurality of objects (e.g., one or more processors performing steps A, B, C, and D) encompasses both all such attributes or functions being mapped to all such objects and subsets of the attributes or functions being mapped to subsets of the attributes or functions (e.g., both all processors each performing steps A-D, and a case in which processor 1 performs step A, processor 2 performs step B and part of step C, and processor 3 performs part of step C and step D), unless otherwise indicated. Further, unless otherwise indicated, statements that one value or action is “based on” another condition or value encompass both instances in which the condition or value is the sole factor and instances in which the condition or value is one factor among a plurality of factors. Unless otherwise indicated, statements that “each” instance of some collection have some property should not be read to exclude cases where some otherwise identical or similar members of a larger collection do not have the property, i.e., each does not necessarily mean each and every.

Although the present invention has been described in detail for the purpose of illustration based on what are currently considered to be the most practical and preferred embodiments, it is to be understood that such detail is solely for that purpose and that the invention is not limited to the disclosed embodiments, but, on the contrary, is intended to cover modifications and equivalent arrangements that are within the scope of the appended claims. For example, it is to be understood that the present invention contemplates that, to the extent possible, one or more features of any embodiment can be combined with one or more features of any other embodiment. 

What is claimed is:
 1. A method of creating an ontology from document-extracted objects and providing supplemental functionalities to an executable program via the ontology, the method being implemented by a computer system that includes one or more physical processors executing computer program instructions that, when executed, perform the method, the method comprising: extracting objects from a collection of documents; converting the objects to one or more data sets having a pre-defined format; defining one or more relationships between the one or more data sets; generating an ontology based on (i) the one or more data sets and (ii) the one or more relationships; generating, based on the generated ontology, supplemental information for an executable program, wherein the supplemental information is related to one or more functionalities of an application to be added to the executable program; and providing the supplemental information as input to the executable program, wherein the supplemental information, at least in part, causes the one or more functionalities of the application be made available via the executable program.
 2. The method of claim 1, wherein the one or more functionalities are made available via the executable program without recompiling the executable program.
 3. The method of claim 1, wherein the collection of documents includes business logic that defines at least one of the one or more functionalities associated with the application.
 4. The method of claim 1, wherein the objects include business rules, business definitions, constraints, data points, data models, or relationships embedded in documents of the collection.
 5. The method of claim 1, wherein defining the one or more relationships comprises performing, based on one or more natural language processing libraries, natural language processing on the one or more data sets to define the one or more relationships between the one or more data sets.
 6. The method of claim 1, further comprising: cleansing the one or more data sets to remove one or more naming conventions.
 7. The method of claim 1, further comprising: extracting additional objects from additional documents; converting the additional objects to one or more additional data sets having the pre-defined format; defining one or more additional relationships between the one or more data sets or the one or more additional data sets; updating the ontology based on (i) the one or more additional data sets and (ii) the one or more additional relationships to generate an updated version of the ontology such that supplemental information subsequently derived from the updated version of the ontology is related to one or more additional application functionalities, the one or more additional application functionalities not being in the supplemental information generated based on an older version of the ontology; generating, based on the updated version of the ontology, subsequent supplemental information for the executable program, wherein the subsequent supplemental information is related to the one or more additional application functionalities to be added to the executable program; and providing the subsequent supplemental information as input to the executable program, wherein the subsequent supplemental information, at least in part, causes the one or more additional application functionalities to be made available via the executable program.
 8. The method of claim 7, further comprising: selecting the one or more additional data sets to be used to update the ontology, the selection of the one or more additional data sets being based on a determination that aspects of the one or more additional data sets are not represented in the ontology.
 9. The method of claim 8, further comprising: extracting further objects from the additional documents; and converting the further objects to one or more further data sets having the pre-defined format, wherein, based on a determination that aspects of the one or more further data sets are represented in the ontology, the one or more further data sets are not selected for use in updating the ontology.
 10. The method of claim 1, wherein the executable program obtains the supplemental information from working memory at runtime.
 11. A system for creating an ontology from document-extracted objects and providing supplemental functionalities to an executable program via the ontology, the system comprising: a computer system that includes one or more physical processors programmed with computer program instructions that, when executed, cause the computer system to: extract objects from a collection of documents; convert the objects to one or more data sets having a pre-defined format; define one or more relationships between the one or more data sets; generate an ontology based on (i) the one or more data sets and (ii) the one or more relationships; generate, based on the generated ontology, supplemental information for an executable program, wherein the supplemental information is related to one or more functionalities of an application to be added to the executable program; and provide the supplemental information as input to the executable program, wherein the supplemental information, at least in part, causes the one or more functionalities of the application be made available via the executable program.
 12. The system of claim 11, wherein the one or more functionalities are made available via the executable program without recompiling the executable program.
 13. The system of claim 11, wherein the collection of documents includes business logic that defines at least one of the one or more functionalities associated with the application.
 14. The system of claim 11, wherein the objects include business rules, business definitions, constraints, data points, data models, or relationships embedded in documents of the collection.
 15. The system of claim 11, wherein defining the one or more relationships comprises performing, based on one or more natural language processing libraries, natural language processing on the one or more data sets to define the one or more relationships between the one or more data sets.
 16. The system of claim 11, wherein the computer system is further caused to: cleanse the one or more data sets to remove one or more naming conventions.
 17. The system of claim 11, wherein the computer system is further caused to: extract additional objects from additional documents; convert the additional objects to one or more additional data sets having the pre-defined format; define one or more additional relationships between the one or more data sets or the one or more additional data sets; update the ontology based on (i) the one or more additional data sets and (ii) the one or more additional relationships to generate an updated version of the ontology such that supplemental information subsequently derived from the updated version of the ontology is related to one or more additional application functionalities, the one or more additional application functionalities not being in the supplemental information generated based on an older version of the ontology; and generate, based on the updated version of the ontology, subsequent supplemental information for the executable program, wherein the subsequent supplemental information is related to the one or more additional application functionalities to be added to the executable program; and provide the subsequent supplemental information as input to the executable program, wherein the subsequent supplemental information, at least in part, causes the one or more additional application functionalities to be made available via the executable program.
 18. The system of claim 17, wherein the computer system is further caused to: select the one or more additional data sets to be used to update the ontology, the selection of the one or more additional data sets being based on a determination that aspects of the one or more additional data sets are not represented in the ontology.
 19. The system of claim 18, wherein the computer system is further caused to: extract further objects from the additional documents; and convert the further objects to one or more further data sets having the pre-defined format, wherein, based on a determination that aspects of the one or more further data sets are represented in the ontology, the one or more further data sets are not selected for use in updating the ontology.
 20. The system of claim 11, wherein the executable program obtains the supplemental information from working memory at runtime. 